IBM Data Warehousing and Analytics Portfolio Summary



Similar documents
Big Data and Trusted Information

IBM Big Data Platform

Exploiting Data at Rest and Data in Motion with a Big Data Platform

High-Performance Business Analytics: SAS and IBM Netezza Data Warehouse Appliances

How the oil and gas industry can gain value from Big Data?

Evolving Solutions Disruptive Technology Series Modern Data Warehouse

IBM Big Data in Government

Poslovni slučajevi upotrebe IBM Netezze

Beyond Watson: The Business Implications of Big Data

Real World Use of BIG DATA. Tim Brown Information Management Technical Pre-Sales Aruna Kolluru Information Management Technical Pre-Sales 04/2013

IBM Analytics. Just the facts: Four critical concepts for planning the logical data warehouse

IBM Smart Analytics Systems

BAO & Big Data Overview Applied to Real-time Campaign GSE. Joel Viale Telecom Solutions Lab Solution Architect. Telecom Solutions Lab

Beyond the Single View with IBM InfoSphere

IBM System x reference architecture solutions for big data

Focus on the business, not the business of data warehousing!

Industry Impact of Big Data in the Cloud: An IBM Perspective

IBM Netezza High Capacity Appliance

IBM Big Data Platform

Netezza and Business Analytics Synergy

Driving Peak Performance IBM Corporation

IBM Information Management Overview

Klarna Tech Talk: Mind the Data! Jeff Pollock InfoSphere Information Integration & Governance

IBM Solution Framework for Lifecycle Management of Research Data IBM Corporation

Netezza delivers data warehouse appliances that dramatically simplify and speed delivery of high-performance analytics across an enterprise

IBM Business Analytics and Optimization The Path to Breakaway Performance

Big Data overview. Livio Ventura. SICS Software week, Sept Cloud and Big Data Day

Smarter Analytics Leadership Summit Big Data. Real Solutions. Big Results.

SAS and Teradata Partnership

Optimizing Storage for Better TCO in Oracle Environments. Part 1: Management INFOSTOR. Executive Brief

Ubrzajte svoj Data Warehouse 100 puta i više

IBM AND NEXT GENERATION ARCHITECTURE FOR BIG DATA & ANALYTICS!

Einsatzfelder von IBM PureData Systems und Ihre Vorteile.

Architecting for Big Data Analytics and Beyond: A New Framework for Business Intelligence and Data Warehousing

Big Data System and Architecture

Using Big Data for Smarter Decision Making. Colin White, BI Research July 2011 Sponsored by IBM

Solutions for Communications with IBM Netezza Network Analytics Accelerator

IBM PureData Systems. Robert Božič 2013 IBM Corporation

Big Data & Analytics. Counterparty Credit Risk Management. Big Data in Risk Analytics

Smarter Analytics. Barbara Cain. Driving Value from Big Data

III JORNADAS DE DATA MINING

ENTERPRISE EDITION ORACLE DATA SHEET KEY FEATURES AND BENEFITS ORACLE DATA INTEGRATOR

Raul F. Chong Senior program manager Big data, DB2, and Cloud IM Cloud Computing Center of Competence - IBM Toronto Lab, Canada

2015 Ironside Group, Inc. 2

Ramesh Bhashyam Teradata Fellow Teradata Corporation

Harnessing the power of advanced analytics with IBM Netezza

Big Data Use Case Deep Dive 5 Game Changing Use Cases for Big Data

IBM Software Delivering trusted information for the modern data warehouse

Building Confidence in Big Data Innovations in Information Integration & Governance for Big Data

Name: Srinivasan Govindaraj Title: Big Data Predictive Analytics

Quickly Deploy Microsoft Private Cloud and SQL Server 2012 Data Warehouse on Hitachi Converged Solutions. September 25, 2013

Data Warehousing. Jens Teubner, TU Dortmund Winter 2015/16. Jens Teubner Data Warehousing Winter 2015/16 1

EMC/Greenplum Driving the Future of Data Warehousing and Analytics

A New Era Of Analytic

Datalogix. Using IBM Netezza data warehouse appliances to drive online sales with offline data. Overview. IBM Software Information Management

Big Data, Integration and Governance: Ask the Experts

ORACLE DATA INTEGRATOR ENTERPRISE EDITION

Welcome to The Future of Analytics In Action IBM Corporation

Customer Insight Appliance. Enabling retailers to understand and serve their customer

Bringing Strategy to Life Using an Intelligent Data Platform to Become Data Ready. Informatica Government Summit April 23, 2015

IBM Cognos 10: Enhancing query processing performance for IBM Netezza appliances

Evolving Data Warehouse Architectures

IBM BigInsights for Apache Hadoop

Big Data Analytics. Copyright 2011 EMC Corporation. All rights reserved.

IBM InfoSphere Discovery: The Power of Smarter Data Discovery

Let Big Data connect the dots in your business

MDM and Data Warehousing Complement Each Other

Are You Ready for Big Data?

Luncheon Webinar Series May 13, 2013

Smart Consolidation for Smarter Warehousing. A Key IBM Strategy for Data Warehousing and Analytics

A financial software company

Using Business Analytics to transform the business. Oliver Oursin Worldwide Predictive & Business Intelligence Executive

Get Ready for Big Data with IBM System z

IBM PureData System for Operational Analytics

Business Analytics for Big Data

Introducing Oracle Exalytics In-Memory Machine

Modernizing Your Data Warehouse for Hadoop

How To Get More Data From Your Computer

Integrating Netezza into your existing IT landscape

Solve your toughest challenges with data mining

A TECHNICAL WHITE PAPER ATTUNITY VISIBILITY

Data Warehousing on System z BWDB2UG Presentation 9/12/07 v

IBM Software. The MDM advantage: Creating insight from big data

INTELLIGENT BUSINESS STRATEGIES WHITE PAPER

Next presentation starting soon Business Analytics using Big Data to gain competitive advantage

Big Data and Your Data Warehouse Philip Russom

Busin i ess I n I t n e t ll l i l g i e g nce c T r T e r nds For 2013

The Evolution of Business Analytics and Big Data Integration on zenterprise

Big Data, Integration and governance. Turn information into insight+

Emerging Technologies Shaping the Future of Data Warehouses & Business Intelligence

Are You Ready for Big Data?

Deploying Big Data to the Cloud: Roadmap for Success

Informatica Data Replication: Maximize Return on Data in Real Time Chai Pydimukkala Principal Product Manager Informatica

Big Data & Analytics for Semiconductor Manufacturing

BMW11: Dealing with the Massive Data Generated by Many-Core Systems. Dr Don Grice IBM Corporation

OS Thread Monitoring for DB2 Server Mathias Hoffmann, ITGAIN. Locking and Concurrency Troubleshooting Ani Patel, IBM Toronto Labs

Transcription:

IBM Information Management IBM Data Warehousing and Analytics Portfolio Summary Information Management Mike McCarthy IBM Corporation mmccart1@us.ibm.com

IBM Information Management Portfolio

Current Data Warehouse Architecture Source Systems CRM ERP Data Integration Enterprise Data Warehouse HR Billing External Sources Data Marts Data Source Data Source Data Source Data Source 3

IBM s Logical Data Warehouse Architecture InfoSphere BigInsights Big Data Processing Features Smart Analytics System Operational Analytics Enterprise Data Hub InfoSphere Streams Stream Processing Application and workload optimized appliances and systems Fast data movement and integration Data governance and lifecycle management Netezza BI + Analytics Netezza High Capacity Appliance Queryable Archive Framework for integrated management 4

Simplicity, Flexibility, Choice IBM Data Warehouse & Analytics Solutions IBM Netezza IBM Smart Analytics System IBM Warehouse Software Custom Solutions Warehouse Accelerators Information Management Portfolio (Information Server, MDM, Streams, etc) Simplicity The right mix of simplicity and flexibility Flexibility

Information Management IBM Netezza The true data warehousing appliance 6 Purpose-built analytics engine Integrated database, server and storage Standard interfaces Low total cost of ownership Speed: 10-100x faster than traditional system Simplicity: Minimal administration and tuning Scalability: Peta-scale user data capacity Smart: High-performance advanced analytics

Information Management Smart Analytics System The modular system for business analytics 7 Integrated Cognos Business Intelligence Integrated InfoSphere Warehouse Integrated Information Server In-database cubing and mining Choice of platform and OS Scale On Demand Modular application interfaces Built for complex and mixed workloads Autonomic tuning

The Big Data Opportunity Extracting insight from an immense volume, variety and velocity of data, in context, beyond what was previously possible. Variety: Velocity: Volume: Manage the complexity of multiple relational and nonrelational data types and schemas Streaming data and large volume data movement Scale from terabytes to zettabytes 8 8

InfoSphere Streams A platform for real-time analytics on big data in motion Volume Terabytes per second Petabytes per day Variety All kinds of data All kinds of analytics Velocity Insights in microseconds Agility Dynamically responsive Rapid application development Millions of events per second ICU Monitoring Algo Trading Real time decisions Powerful Analytics Cyber Security Government / Law enforcement Environment Monitoring Smart Grid Traditional / Non-traditional data sources Telco churn predict Microsecond Latency

InfoSphere BigInsights A platform for analytics on big data at rest Volume Petabyte range Variety All kinds of data All kinds of analytics Traditional / Non-traditional data sources

Data Analytics The continues right are infrastructure becoming to more complex as expand business is now mission exponentially. demands critical faster to compete answers. on analytics. 11 IBM Confidential